Author
Listed:
- Dossa, Joel Victor
- Ukwuoma, Chiagoziem C.
- Thomas, Dara
- Dossa, James Mhoja
- Gopang, Aamir Ali
Abstract
This study investigates the nexus between ESG disclosure and firm performance using advanced machine learning models (MLs) to capture complex, non-linear interactions. Analyzing data from Chinese A-share firms (2012–2022), it employs Explainable AI (XAI) tools such as SHAP, heat maps, and Williams plots to enhance model transparency and interpretability. Among several models, the Extra Trees model demonstrated the best predictive performance, revealing that ESG disclosure positively correlates with firm performance, with environmental disclosure exerting the strongest influence. Policymakers are urged to promote standardized, transparent ESG disclosures, particularly focusing on environmental practices while addressing greenwashing to enhance credibility. Investors can prioritize firms with strong environmental practices and use predictive models to refine decision-making. Corporate managers are encouraged to embed sustainability into long-term strategies and utilize ML techniques for improved governance. The study contributes by showcasing the utility of MLs in exploring ESG-performance relationships, offering actionable insights for stakeholders, and providing a foundation for future research. Researchers are encouraged to investigate non-linear ESG impacts across diverse contexts, using broader samples and incorporating market-based measures and ESG rating agencies to improve generalizability. This approach advances understanding of ESG's role in driving firm performance while addressing methodological gaps.
Suggested Citation
Dossa, Joel Victor & Ukwuoma, Chiagoziem C. & Thomas, Dara & Dossa, James Mhoja & Gopang, Aamir Ali, 2025.
"Prediction of nexus among ESG disclosure and firm Performance: Applicability, explainability and implications,"
Innovation and Green Development, Elsevier, vol. 4(4).
Handle:
RePEc:eee:ingrde:v:4:y:2025:i:4:s294975312500058x
DOI: 10.1016/j.igd.2025.100261
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